基于深度学习算法的棉花病害检测定制数据集方法

M. Tahir, Ayesha Yaqoob, Haiqa Hamid, R. Latif
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引用次数: 1

摘要

农业综合企业占据了巴基斯坦大部分土地。它还支持巴基斯坦的财政状况。大约62%的巴基斯坦人口生活在农村地区,农业是他们收入的一部分。巴基斯坦现在是世界第五大棉花生产国和第三大棉纱消费国/生产国。棉花种植面积为600万英亩,占全国500万农民中的130万,约占全国耕地总面积的15%。棉花田受到各种疾病的困扰,这些疾病可能对作物的质量和数量造成毁灭性的影响。由于图像处理,这些疾病的检测变得越来越普遍。病原体经常引起植物疾病,如细菌、真菌和微生物,它们在不卫生的环境中茁壮成长。农民因此遭受了重大挫折。本研究的主要目的是了解棉花田的病害情况。我们使用具有Pooling, Flatten, Dense和dropout层的卷积神经网络(CN)技术识别植物/叶片疾病,并使用TensorFlow和Kera的支持分析图像数据。我们的数据集有6个类别,包括1965年的5个患病棉花类别和1个健康棉花类别的照片。我们比较了三个Kera的应用程序,以获得算法的最佳准确性。我们使用的应用程序是Xception、InceptionV3和InceptionRestNetV2。异常模型的准确率最高,平均为90.34%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Methodology of Customized Dataset for Cotton Disease Detection Using Deep Learning Algorithms
Agribusiness occupies the lion’s share of Pakistan’s land. It also supports Pakistan’s financial situation. Approximately 62% of Pakistan’s population lives in rural regions and relies on agriculture for a portion of their income. Pakistan is now the 5th-largest producer of cotton and the 3rd-largest consumer/manufacturer of cotton yarn worldwide. Cotton is grown on 6.0 million acres by 1.3 million of the country’s 5 million farmers, or around 15% of the country’s total cultivated land. Cotton fields are plagued by various illnesses that may have a devastating effect on the quality and quantity of the crop. Detection of these disorders has become more common because of image processing. Pathogens often cause plant diseases like germs, fungi, and microbes that thrive in an unsanitary environment. The farmer suffers a significant setback as a result of this. The main purpose of this research is to get to know the disease in a cotton field. We identify plant/leaf disease using the convolutional neural networks (CN) technique with Pooling, Flatten, Dense, and dropout layers to analyze picture data using TensorFlow and Kera’s support. Our dataset has six classes, including 1965 photos of five sick cotton plant classes and one healthy class. We compared three Kera’s applications to get the algorithm’s best accuracy. The applications we used are Xception, InceptionV3 and InceptionRestNetV2. The Xception model shows us the best accuracy, an average of 90.34%.
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